We explore the possibility of composing the results of a fixed number of Gaussian graphical model selections on some partially overlapping variables. This appears to be an useful approach in all the research areas where a large amount of data from different sources and types of experiments is available. Therefore the focus is in binding together information coming from heterogeneous studies to improve the understanding of a particular phenomenon of interest. The proposed approach relies on numerical results on artificial and real data
We investigate methods for data-based selection of working covariance models in the analysis of corr...
Abstract The objective of this exposition is to give an overview of the existing approaches to robus...
This paper presents a default model-selection procedure for Gaussian graphical models that involves ...
We explore the possibility of composing the results of a fixed number of Gaussian graphical model se...
We explore the possibility of composing the results of a fixed number of Gaussian graphical model se...
Working paper n.2, Dipartimento di Scienze Statistiche, Universit\ue0\ua0 di Padov
Combining statistical models is an useful approach in all the research area where a global picture o...
Combining statistical models is an useful approach in all the research area where a global picture o...
Graphical models have established themselves as fundamental tools through which to understand comple...
Combining statistical models is an useful approach in all the research area where a global picture o...
Given a joint probability distribution, one can generally find its marginal components. However, it...
Connections between graphical Gaussian models and classical single-factor models are obtained by par...
This paper develops a general framework to support the combination of information from independent b...
We discuss the Gaussian graphical model (GGM; an undirected network of partial correlation coefficie...
Summary The covariance structure of multivariate functional data can be highly comple...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
Abstract The objective of this exposition is to give an overview of the existing approaches to robus...
This paper presents a default model-selection procedure for Gaussian graphical models that involves ...
We explore the possibility of composing the results of a fixed number of Gaussian graphical model se...
We explore the possibility of composing the results of a fixed number of Gaussian graphical model se...
Working paper n.2, Dipartimento di Scienze Statistiche, Universit\ue0\ua0 di Padov
Combining statistical models is an useful approach in all the research area where a global picture o...
Combining statistical models is an useful approach in all the research area where a global picture o...
Graphical models have established themselves as fundamental tools through which to understand comple...
Combining statistical models is an useful approach in all the research area where a global picture o...
Given a joint probability distribution, one can generally find its marginal components. However, it...
Connections between graphical Gaussian models and classical single-factor models are obtained by par...
This paper develops a general framework to support the combination of information from independent b...
We discuss the Gaussian graphical model (GGM; an undirected network of partial correlation coefficie...
Summary The covariance structure of multivariate functional data can be highly comple...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
Abstract The objective of this exposition is to give an overview of the existing approaches to robus...
This paper presents a default model-selection procedure for Gaussian graphical models that involves ...